Limit Theorems for Fixed Point Biased Pattern Avoiding Involutions
Abstract
We study fixed point biased involutions that avoid a pattern. For every pattern of length three we obtain limit theorems for the asymptotic distribution of the (appropriately centered and scaled) number of fixed points of a random fixed point biased involution avoiding that pattern. When the pattern being avoided is either 321, 132, or 213, we find a phase transition depending on the strength of the bias. We also obtain a limit theorem for distribution of fixed points when the pattern is 123·s k(k+1) for any k and partial results when the pattern is (k+1)k·s 321.
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